4.4 Article

Deep Learning-Based Skin Lesion Diagnosis Model Using Dermoscopic Images

期刊

INTELLIGENT AUTOMATION AND SOFT COMPUTING
卷 31, 期 1, 页码 621-634

出版社

TECH SCIENCE PRESS
DOI: 10.32604/iasc.2022.019117

关键词

Intelligent models; computer-aided diagnosis; skin lesion; artificial intelligence; deep learning

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Intelligent automation in the healthcare sector is becoming more prevalent with the integration of AI techniques, assisting in better healthcare decision-making. Skin lesion segmentation and classification are crucial in intelligent systems for early and precise skin cancer diagnosis, despite challenges such as artifacts and variable lesion images. The presented IMLT-DL model incorporates various advanced techniques to achieve a high accuracy of 0.992 in skin lesion diagnosis.
In recent years, intelligent automation in the healthcare sector becomes more familiar due to the integration of artificial intelligence (AI) techniques. Intelligent healthcare systems assist in making better decisions, which further enable the patient to provide improved medical services. At the same time, skin lesion is a deadly disease that affects people of all age groups. Skin lesion segmentation and classification play a vital part in the earlier and precise skin cancer diagnosis by intelligent systems. However, the automated diagnosis of skin lesions in dermoscopic images is challenging because of the problems such as artifacts (hair, gel bubble, ruler marker), blurry boundary, poor contrast, and variable sizes and shapes of the lesion images. This study develops intelligent multilevel thresholding with deep learning (IMLT-DL) based skin lesion segmentation and classification model using dermoscopic images to address these problems. Primarily, the presented IMLT-DL model incorporates the Top hat filtering and inpainting technique for the pre-processing of the dermoscopic images. In addition, the Mayfly Optimization (MFO) with multilevel Kapur's thresholding-based segmentation process is involved in determining the infected regions. Besides, an Inception v3 based feature extractor is applied to derive a valuable set of feature vectors. Finally, the classification process is carried out using a gradient boosting tree (GBT) model. The presented model's performance takes place against the International Skin Imaging Collaboration (ISIC) dataset, and the experimental outcomes are inspected in different evaluation measures. The resultant experimental values ensure that the proposed IMLT-DL model outperforms the existing methods by achieving higher accuracy of 0.992.

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